CVCA:用于毫米波大规模MIMO物理层认证的复值可分类自编码器

Xinyuan Zeng, Chao Wang, Cheng-Cai Wang, Zan Li
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引用次数: 0

摘要

为了保护毫米波(mmWave)通信免受克隆攻击,本文采用深度学习提出了一种物理层身份验证(PLA)方法,可以同时检测攻击者并对多个合法节点进行分类。与传统的上层认证机制不同,本文提出的PLA方法利用毫米波通道的时空特征提取唯一指纹,构建轻量级的基于通道的认证方法。然而,现有的基于阈值的聚乳酸方法不能区分多个节点,并且基于监督学习的方法在实践中由于无法获得攻击者的通道状态信息(CSI)而限制了应用。此外,传统的实值深度神经网络不能有效地利用复杂信道的相位信息,不适合PLA方案的设计。考虑到这些,我们提出了一个复值可分类自编码器诱导PLA方案,其中包括一个新的复值长短期记忆(LSTM)模块。仿真结果表明,克隆攻击的检测概率与天线数呈正相关,并与现有方法进行了比较,验证了本文方法的优越性。即使在具有挑战性的实验条件下,分类性能也令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CVCA: A Complex-Valued Classifiable Autoencoder for MmWave Massive MIMO Physical Layer Authentication
For protecting millimeter wave (mmWave) communications from clone attacks, this paper employs the deep learning to propose a physical layer authentication (PLA) approach for detecting attackers and classifying multiple legitimate nodes simultaneously. Different from conventional upper-layer authentication mechanisms, the proposed PLA approach exploits the spatial and temporal characteristics of mmWave channels to extract the unique fingerprints for building a lightweight channel-based authentication method. However, the existing threshold-based PLA methods could not discriminate multiple nodes, and supervised learning based approaches have limited application due to the unavailability of attackers' channel state information (CSI) in practice. Besides, traditional real-valued deep neural networks cannot exploit the phase information of complex channels efficiently, which is unsuitable for designing the PLA scheme. Considering these, we propose a complex-valued classifiable autoencoder induced PLA scheme that includes a novel complex-valued long short-term memory (LSTM) module. Simulation results validate the superiority of our proposed PLA approach by comparing it with existing approaches and demonstrate that the detection probability of clone attacks positively correlates with antenna number. The classification performance is satisfactory even under the challenging experimental condition.
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